Hinchliffe Chloe, Yogarajah Mahinda, Elkommos Samia, Tang Hongying, Abasolo Daniel
Centre for Biomedical Engineering, School of Mechanical Engineering Sciences, University of Surrey, Guildford GU2 7XH, UK.
Department of Clinical and Experimental Epilepsy, Institute of Neurology, University College London, National Hospital for Neurology and Neurosurgery, University College London Hospitals, Epilepsy Society, London WC1E 6BT, UK.
Entropy (Basel). 2022 Sep 23;24(10):1348. doi: 10.3390/e24101348.
Psychogenic non-epileptic seizures (PNES) may resemble epileptic seizures but are not caused by epileptic activity. However, the analysis of electroencephalogram (EEG) signals with entropy algorithms could help identify patterns that differentiate PNES and epilepsy. Furthermore, the use of machine learning could reduce the current diagnosis costs by automating classification. The current study extracted the approximate sample, spectral, singular value decomposition, and Renyi entropies from interictal EEGs and electrocardiograms (ECG)s of 48 PNES and 29 epilepsy subjects in the broad, delta, theta, alpha, beta, and gamma frequency bands. Each feature-band pair was classified by a support vector machine (SVM), k-nearest neighbour (kNN), random forest (RF), and gradient boosting machine (GBM). In most cases, the broad band returned higher accuracy, gamma returned the lowest, and combining the six bands together improved classifier performance. The Renyi entropy was the best feature and returned high accuracy in every band. The highest balanced accuracy, 95.03%, was obtained by the kNN with Renyi entropy and combining all bands except broad. This analysis showed that entropy measures can differentiate between interictal PNES and epilepsy with high accuracy, and improved performances indicate that combining bands is an effective improvement for diagnosing PNES from EEGs and ECGs.
心因性非癫痫性发作(PNES)可能类似于癫痫发作,但并非由癫痫活动引起。然而,使用熵算法分析脑电图(EEG)信号有助于识别区分PNES和癫痫的模式。此外,机器学习的应用可以通过自动化分类降低当前的诊断成本。本研究从48名PNES患者和29名癫痫患者的发作间期脑电图和心电图(ECG)中提取了近似样本熵、频谱熵、奇异值分解熵和雷尼熵,频段包括宽频带、δ频段、θ频段、α频段、β频段和γ频段。每个特征 - 频段对由支持向量机(SVM)、k近邻(kNN)、随机森林(RF)和梯度提升机(GBM)进行分类。在大多数情况下,宽频带的准确率更高,γ频段的准确率最低,将六个频段组合在一起可提高分类器性能。雷尼熵是最佳特征,在每个频段都具有较高的准确率。使用雷尼熵并结合除宽频带之外的所有频段的kNN获得了最高的平衡准确率,为95.03%。该分析表明,熵度量可以高精度地区分发作间期PNES和癫痫,性能的提升表明组合频段是从脑电图和心电图诊断PNES的有效改进方法。